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Showing results 24 to 45 of 45

Issue DateTitleAuthor(s)Type
2021Identification of Major Psychiatric Disorders From Resting-State Electroencephalography Using a Machine Learning Approach이동환Article
2020Identification of Novel microRNA Prognostic Markers Using Cascaded Wx, a Neural Network-Based Framework, in Lung Adenocarcinoma Patients안영호Article
2021Identifying the Risk Factors Associated with Nursing Home Residents' Pressure Ulcers Using Machine Learning Methods신주현Article
2024Imputing missing sleep data from wearables with neural networks in real-world settings김지현Article
2023Interpretable Deep-Learning Approaches for Osteoporosis Risk Screening and Individualized Feature Analysis Using Large Population-Based Data: Model Development and Performance Evaluation이상화; 김진우Article
2020Machine Learning Framework to Identify Individuals at Risk of Rapid Progression of Coronary Atherosclerosis: From the PARADIGM Registry신상훈Article
2023Machine learning models for predicting depression in Korean young employees김석선Article
2022Machine learning models for predicting risk of depression in Korean college students: Identifying family and individual factors김석선Article
2021Machine Learning-Based Automatic Classification of Video Recorded Neonatal Manipulations and Associated Physiological Parameters: A Feasibility Study조수진Article
2018Machine Learning-Based Fast Angular Prediction Mode Decision Technique in Video Coding강제원Article
2022On the Confidence of Stereo Matching in a Deep-Learning Era: A Quantitative Evaluation민동보Article
2022Predicting preterm birth through vaginal microbiota, cervical length, and WBC using a machine learning model김영주; 유영아; Ansari Abuzar; 박선화Article
2023Predicting the Risk of Sleep Disorders Using a Machine Learning-Based Simple Questionnaire: Development and Validation Study김지현Article
2022Prediction of Emergency Cesarean Section Using Machine Learning Methods: Development and External Validation of a Nationwide Multicenter Dataset in Republic of Korea박미혜Article
2023Prediction of medication-related osteonecrosis of the jaws using machine learning methods from estrogen receptor 1 polymorphisms and clinical information곽혜선; 김선종; 김진우; 이정Article
2023Reduction of False Positives for Runtime Errors in C/C++ Software: A Comparative Study최병주; 박지현Article
2019Retrieval of Total Precipitable Water from Himawari-8 AHI Data: A Comparison of Random Forest, Extreme Gradient Boosting, and Deep Neural Network안명환Article
2023Risk factors based vessel-specific prediction for stages of coronary artery disease using Bayesian quantile regression machine learning method: Results from the PARADIGM registry신상훈Article
2022Risk Scoring System for Vancomycin-Associated Acute Kidney Injury곽혜선; 이정Article
2022ShellCore: Automating Malicious IoT Software Detection Using Shell Commands Representation양대헌Article
2019The Machine Learning-Based Dropout Early Warning System for Improving the Performance of Dropout Prediction정제영; 이선복Article
2020Twitter Analysis of the Nonmedical Use and Side Effects of Methylphenidate: Machine Learning Study김명규Article

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